This file is used to generate a dataset containing only IBL and mORS cells.

library(dplyr)
library(patchwork)
library(ggplot2)

.libPaths()
## [1] "/usr/local/lib/R/library"

Preparation

In this section, we set the global settings of the analysis. We will store data there :

save_name = "iblmors"
out_dir = "."

We load the sample information :

sample_info = readRDS(paste0(out_dir, "/../../1_metadata/hs_hd_sample_info.rds"))
project_names_oi = sample_info$project_name

graphics::pie(rep(1, nrow(sample_info)),
              col = sample_info$color,
              labels = sample_info$project_name)

Here are custom colors for each cell type :

color_markers = readRDS(paste0(out_dir, "/../../1_metadata/hs_hd_color_markers.rds"))

data.frame(cell_type = names(color_markers),
           color = unlist(color_markers)) %>%
  ggplot2::ggplot(., aes(x = cell_type, y = 0, fill = cell_type)) +
  ggplot2::geom_point(pch = 21, size = 5) +
  ggplot2::scale_fill_manual(values = unlist(color_markers), breaks = names(color_markers)) +
  ggplot2::theme_classic() +
  ggplot2::theme(legend.position = "none",
                 axis.line = element_blank(),
                 axis.title = element_blank(),
                 axis.ticks = element_blank(),
                 axis.text.y = element_blank(),
                 axis.text.x = element_text(angle = 30, hjust = 1))

Make iblmors dataset

Atlas

We load the combined dataset containing all cell types from all samples :

sobj = readRDS(paste0(out_dir, "/../../3_combined/hs_hd_sobj.rds"))
sobj
## An object of class Seurat 
## 20003 features across 12111 samples within 1 assay 
## Active assay: RNA (20003 features, 2000 variable features)
##  6 dimensional reductions calculated: RNA_pca, RNA_pca_38_tsne, RNA_pca_38_umap, harmony, harmony_38_umap, harmony_38_tsne

We represent cells in the tSNE :

name2D = "harmony_38_tsne"

We smooth cell type annotation at a cluster level :

cluster_type = table(sobj$cell_type, sobj$seurat_clusters) %>%
  prop.table(., margin = 2) %>%
  apply(., 2, which.max)
cluster_type = setNames(nm = names(cluster_type),
                        levels(sobj$cell_type)[cluster_type])

sobj$cluster_type = cluster_type[sobj$seurat_clusters]

We look gene markers expression level, cell annotation and cluster-smoothed annotation on the projection, to locate iblmors cells :

iblmors_markers = c("KRT16", "EHF", "ALDH3A1")
iblmors_cell_type = c("IBL", "ORS")
color_markers[!(names(color_markers) %in% iblmors_cell_type)] = "gray92"

# Feature Plot
plot_list = lapply(iblmors_markers, FUN = function(one_gene) {
  p = Seurat::FeaturePlot(sobj, reduction = name2D,
                          features = one_gene) +
    Seurat::NoAxes() +
    ggplot2::scale_color_gradientn(colors = aquarius:::color_gene) +
    ggplot2::theme(aspect.ratio = 1,
                   plot.subtitle = element_text(hjust = 0.5))
  return(p)
})

# Cell type annotation
plot_list[[length(plot_list) + 1]] = Seurat::DimPlot(sobj, group.by = "cell_type",
                                                     cols = color_markers, reduction = name2D,
                                                     order = save_name) +
  ggplot2::labs(title = "Cell annotation",
                subtitle = paste0(sum(sobj$cell_type %in% iblmors_cell_type),
                                  " cells")) +
  Seurat::NoAxes() + Seurat::NoLegend() +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 plot.subtitle = element_text(hjust = 0.5))

# Cluster-smoothed annotation
plot_list[[length(plot_list) + 1]] = Seurat::DimPlot(sobj,
                                                     reduction = name2D,
                                                     group.by = "cluster_type") +
  ggplot2::scale_color_manual(values = c(unname(unlist(color_markers[iblmors_cell_type])),
                                         rep("gray92", length(color_markers) - length(iblmors_cell_type))),
                              breaks = c(iblmors_cell_type, setdiff(names(color_markers), iblmors_cell_type))) +
  ggplot2::labs(title = "Cluster annotation",
                subtitle = paste0(sum(sobj$cluster_type %in% iblmors_cell_type),
                                  " cells")) +
  Seurat::NoAxes() + Seurat::NoLegend() +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 plot.subtitle = element_text(hjust = 0.5))

patchwork::wrap_plots(plot_list, nrow = 1)

Due to clustering that badly separate IBL from IFE, there is a mis-selection of cells of interest : false positive. However, annotation smoothing adds a lot of (all) false negative and clean the annotation. We extract cells of interest based on clustering. Then, we generate a new cluster to remove false positive.

Combined dataset

We extract cells of interest based on the clustering :

sobj = subset(sobj, cluster_type %in% iblmors_cell_type)
sobj
## An object of class Seurat 
## 20003 features across 3663 samples within 1 assay 
## Active assay: RNA (20003 features, 2000 variable features)
##  6 dimensional reductions calculated: RNA_pca, RNA_pca_38_tsne, RNA_pca_38_umap, harmony, harmony_38_umap, harmony_38_tsne

We remove all things that were calculated based on the full atlas :

sobj = Seurat::DietSeurat(sobj)
sobj
## An object of class Seurat 
## 20003 features across 3663 samples within 1 assay 
## Active assay: RNA (20003 features, 2000 variable features)

Clean metadata

We keep a subset of meta.data and reset levels :

sobj@meta.data = sobj@meta.data[, c("orig.ident", "nCount_RNA", "nFeature_RNA", "log_nCount_RNA",
                                    "project_name", "sample_identifier", "sample_type", "cell_type",
                                    "Seurat.Phase", "cyclone.Phase", "percent.mt", "percent.rb")]

sobj$orig.ident = factor(sobj$orig.ident, levels = levels(sample_info$project_name))
sobj$project_name = factor(sobj$project_name, levels = levels(sample_info$project_name))
sobj$sample_identifier = factor(sobj$sample_identifier, levels = levels(sample_info$sample_identifier))
sobj$sample_type = factor(sobj$sample_type, levels = levels(sample_info$sample_type))

summary(sobj@meta.data)
##    orig.ident     nCount_RNA     nFeature_RNA    log_nCount_RNA  
##  2021_31: 419   Min.   :  692   Min.   : 500.0   Min.   : 6.540  
##  2021_36: 168   1st Qu.: 3055   1st Qu.: 982.5   1st Qu.: 8.025  
##  2021_41: 656   Median : 9210   Median :2491.0   Median : 9.128  
##  2022_03:1024   Mean   :11707   Mean   :2523.6   Mean   : 8.909  
##  2022_14: 690   3rd Qu.:16340   3rd Qu.:3673.0   3rd Qu.: 9.702  
##  2022_01: 328   Max.   :74969   Max.   :7123.0   Max.   :11.225  
##  2022_02: 378                                                    
##   project_name  sample_identifier sample_type         cell_type   
##  2021_31: 419   HS_1: 419         HS:2957     ORS          :1790  
##  2021_36: 168   HS_2: 168         HD: 706     IBL          :1523  
##  2021_41: 656   HS_3: 656                     IFE          : 170  
##  2022_03:1024   HS_4:1024                     HFSC         :  67  
##  2022_14: 690   HS_5: 690                     proliferative:  46  
##  2022_01: 328   HD_1: 328                     sebocytes    :  23  
##  2022_02: 378   HD_2: 378                     (Other)      :  44  
##  Seurat.Phase       cyclone.Phase        percent.mt        percent.rb    
##  Length:3663        Length:3663        Min.   : 0.0000   Min.   : 1.634  
##  Class :character   Class :character   1st Qu.: 0.2781   1st Qu.:22.088  
##  Mode  :character   Mode  :character   Median : 3.6456   Median :27.146  
##                                        Mean   : 3.9244   Mean   :26.454  
##                                        3rd Qu.: 5.9201   3rd Qu.:31.323  
##                                        Max.   :19.8012   Max.   :46.017  
## 

Processing

Metadata

How many cells by sample ?

table(sobj$project_name)
## 
## 2021_31 2021_36 2021_41 2022_03 2022_14 2022_01 2022_02 
##     419     168     656    1024     690     328     378

We represent this information as a barplot :

aquarius::plot_barplot(df = table(sobj$project_name,
                                  sobj$cell_type) %>%
                         as.data.frame.table() %>%
                         `colnames<-`(c("project_name", "cell_type", "nb_cells")),
                       x = "project_name", y = "nb_cells", fill = "cell_type",
                       position = position_stack()) +
  ggplot2::scale_fill_manual(values = color_markers,
                             breaks = names(color_markers),
                             name = "Cell type")

Remove false positive

We normalize gene expression for remaining cells :

sobj = Seurat::NormalizeData(sobj,
                             normalization.method = "LogNormalize")
sobj = Seurat::FindVariableFeatures(sobj, nfeatures = 3000)
sobj = Seurat::ScaleData(sobj)

sobj
## An object of class Seurat 
## 20003 features across 3663 samples within 1 assay 
## Active assay: RNA (20003 features, 3000 variable features)

We perform a PCA :

sobj = Seurat::RunPCA(sobj,
                      assay = "RNA",
                      reduction.name = "RNA_pca",
                      npcs = 100,
                      seed.use = 1337L)
sobj
## An object of class Seurat 
## 20003 features across 3663 samples within 1 assay 
## Active assay: RNA (20003 features, 3000 variable features)
##  1 dimensional reduction calculated: RNA_pca

We choose the number of dimensions such that they summarize 60 % of the variability :

stdev = sobj@reductions[["RNA_pca"]]@stdev
stdev_prop = cumsum(stdev)/sum(stdev)
ndims = which(stdev_prop > 0.60)[1]
ndims
## [1] 48

We can visualize this on the elbow plot :

elbow_p = Seurat::ElbowPlot(sobj, ndims = 100, reduction = "RNA_pca") +
  ggplot2::geom_point(x = ndims, y = stdev[ndims], col = "red")
x_text = ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>% as.numeric()
elbow_p = elbow_p +
  ggplot2::scale_x_continuous(breaks = sort(c(x_text, ndims)), limits = c(0, 100))
x_color = ifelse(ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>%
                   as.numeric() %>% round(., 2) == round(ndims, 2), "red", "black")
elbow_p = elbow_p +
  ggplot2::theme_classic() +
  ggplot2::theme(axis.text.x = element_text(color = x_color))

elbow_p

We generate a tSNE and a UMAP with 48 principal components :

sobj = Seurat::RunTSNE(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_tsne"))

sobj = Seurat::RunUMAP(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_umap"))

We can visualize the two representations :

tsne = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_tsne")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - tSNE") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 legend.position = "none")

umap = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_umap")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - UMAP") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5))

tsne | umap

We generate a clustering from the PCA :

reduction_name = "RNA_pca"

sobj = Seurat::FindNeighbors(sobj, reduction = reduction_name)
sobj = Seurat::FindClusters(sobj, resolution = 1.7)
## Modularity Optimizer version 1.3.0 by Ludo Waltman and Nees Jan van Eck
## 
## Number of nodes: 3663
## Number of edges: 116171
## 
## Running Louvain algorithm...
## Maximum modularity in 10 random starts: 0.7671
## Number of communities: 20
## Elapsed time: 0 seconds
cluster_plot = Seurat::DimPlot(sobj, label = TRUE,
                               reduction = paste0(reduction_name, "_", ndims, "_umap")) +
  Seurat::NoAxes() +
  ggplot2::theme(aspect.ratio = 1)
cluster_plot

We look at key markers for iblmors cells, and for eventual contamination :

plot_list = lapply(c("nFeature_RNA", iblmors_markers,
                     c("SPINK5", "KRT1", "KRTDAP", "CIDEA")), FUN = function(one_gene) {
                       Seurat::FeaturePlot(sobj, features = one_gene,
                                           reduction = paste0(reduction_name, "_", ndims, "_umap")) +
                         ggplot2::scale_color_gradientn(colors = aquarius::color_gene) +
                         ggplot2::theme(aspect.ratio = 1) +
                         Seurat::NoAxes() + Seurat::NoLegend()
                     })

patchwork::wrap_plots(plot_list, nrow = 2)

We select clusters based on KRTDAP expression :

mean_score_thresh = 1

sobj$KRTDAP_expr = Seurat::FetchData(sobj, "KRTDAP")
score_by_clusters = sobj@meta.data %>%
  dplyr::select(seurat_clusters, KRTDAP_expr) %>%
  dplyr::group_by(seurat_clusters) %>%
  dplyr::summarise(avg_score = mean(KRTDAP_expr)) %>%
  as.data.frame()

ggplot2::ggplot(score_by_clusters, aes(x = seurat_clusters, y = avg_score)) +
  ggplot2::geom_point() +
  ggplot2::geom_hline(yintercept = mean_score_thresh, col = "red") +
  ggplot2::labs(x = "Cluster ID", y = "Mean KRTDAP expression",
                title = "Proportion of cells by cluster") +
  ggplot2::theme_classic() +
  ggplot2::theme(plot.title = element_text(hjust = 0.5, face = "bold"))

We remove clusters above threshold :

clusters_to_remove = score_by_clusters %>%
  dplyr::filter(avg_score > mean_score_thresh) %>%
  dplyr::pull(seurat_clusters) %>%
  as.character()

sobj = subset(sobj, idents = clusters_to_remove, invert = TRUE)
sobj
## An object of class Seurat 
## 20003 features across 3532 samples within 1 assay 
## Active assay: RNA (20003 features, 3000 variable features)
##  3 dimensional reductions calculated: RNA_pca, RNA_pca_48_tsne, RNA_pca_48_umap

We remove all reductions in this dataset :

sobj = Seurat::DietSeurat(sobj, assays = "RNA")
sobj
## An object of class Seurat 
## 20003 features across 3532 samples within 1 assay 
## Active assay: RNA (20003 features, 3000 variable features)

How many cells by sample ?

table(sobj$project_name)
## 
## 2021_31 2021_36 2021_41 2022_03 2022_14 2022_01 2022_02 
##     390     165     630    1010     652     321     364

We represent this information as a barplot :

aquarius::plot_barplot(df = table(sobj$project_name,
                                  sobj$cell_type) %>%
                         as.data.frame.table() %>%
                         `colnames<-`(c("project_name", "cell_type", "nb_cells")),
                       x = "project_name", y = "nb_cells", fill = "cell_type",
                       position = position_fill()) +
  ggplot2::scale_fill_manual(values = color_markers,
                             breaks = names(color_markers),
                             name = "Cell type")

No contamination remaining !

Projection

We remove genes that are expressed in less than 5 cells :

sobj = aquarius::filter_features(sobj, min_cells = 5)
## [1] 20003  3532
## [1] 16701  3532
sobj
## An object of class Seurat 
## 16701 features across 3532 samples within 1 assay 
## Active assay: RNA (16701 features, 2824 variable features)

We normalize the count matrix for remaining cells :

sobj = Seurat::NormalizeData(sobj,
                             normalization.method = "LogNormalize")
sobj = Seurat::FindVariableFeatures(sobj, nfeatures = 2000)
sobj = Seurat::ScaleData(sobj)

sobj
## An object of class Seurat 
## 16701 features across 3532 samples within 1 assay 
## Active assay: RNA (16701 features, 2000 variable features)

We perform a PCA :

sobj = Seurat::RunPCA(sobj,
                      assay = "RNA",
                      reduction.name = "RNA_pca",
                      npcs = 100,
                      seed.use = 1337L)
sobj
## An object of class Seurat 
## 16701 features across 3532 samples within 1 assay 
## Active assay: RNA (16701 features, 2000 variable features)
##  1 dimensional reduction calculated: RNA_pca

We choose the number of dimensions such that they summarize 35 % of the variability :

stdev = sobj@reductions[["RNA_pca"]]@stdev
stdev_prop = cumsum(stdev)/sum(stdev)
ndims = which(stdev_prop > 0.35)[1]
ndims
## [1] 20

We can visualize this on the elbow plot :

elbow_p = Seurat::ElbowPlot(sobj, ndims = 100, reduction = "RNA_pca") +
  ggplot2::geom_point(x = ndims, y = stdev[ndims], col = "red")
x_text = ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>% as.numeric()
elbow_p = elbow_p +
  ggplot2::scale_x_continuous(breaks = sort(c(x_text, ndims)), limits = c(0, 100))
x_color = ifelse(ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>%
                   as.numeric() %>% round(., 2) == round(ndims, 2), "red", "black")
elbow_p = elbow_p +
  ggplot2::theme_classic() +
  ggplot2::theme(axis.text.x = element_text(color = x_color))

elbow_p

Without correction

We generate a tSNE and a UMAP with 20 principal components :

sobj = Seurat::RunTSNE(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_tsne"))

sobj = Seurat::RunUMAP(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_umap"))

We can visualize the two representations :

tsne = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_tsne")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - tSNE") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 legend.position = "none")

umap = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_umap")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - UMAP") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5))

tsne | umap

There is a batch-effect mainly in the right population : due to the disease ?

Harmony

We remove batch-effect using Harmony :

`%||%` = function(lhs, rhs) {
  if (!is.null(x = lhs)) {
    return(lhs)
  } else {
    return(rhs)
  }
}

set.seed(1337L)
sobj = harmony::RunHarmony(object = sobj,
                           group.by.vars = "project_name",
                           plot_convergence = TRUE,
                           reduction = "RNA_pca",
                           assay.use = "RNA",
                           reduction.save = "harmony",
                           max.iter.harmony = 20,
                           project.dim = FALSE)

From this batch-effect removed projection, we generate a tSNE and a UMAP.

sobj = Seurat::RunUMAP(sobj, 
                       seed.use = 1337L,
                       dims = 1:ndims,
                       reduction = "harmony",
                       reduction.name = paste0("harmony_", ndims, "_umap"),
                       reduction.key = paste0("harmony_", ndims, "umap_"))
sobj = Seurat::RunTSNE(sobj,
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction = "harmony",
                       reduction.name = paste0("harmony_", ndims, "_tsne"),
                       reduction.key = paste0("harmony", ndims, "tsne_"))

These are the corrected UMAP and tSNE :

tsne = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("harmony_", ndims, "_tsne")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - harmony - tSNE") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 legend.position = "none")

umap = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("harmony_", ndims, "_umap")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - harmony - UMAP") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5))

tsne | umap

We will keep the tSNE from Harmony :

reduction = "harmony"
name2D = paste0("harmony_", ndims, "_tsne")

Clustering

We generate a clustering :

sobj = Seurat::FindNeighbors(sobj, reduction = reduction, dims = 1:ndims)
sobj = Seurat::FindClusters(sobj, resolution = 1)
## Modularity Optimizer version 1.3.0 by Ludo Waltman and Nees Jan van Eck
## 
## Number of nodes: 3532
## Number of edges: 138991
## 
## Running Louvain algorithm...
## Maximum modularity in 10 random starts: 0.7945
## Number of communities: 11
## Elapsed time: 0 seconds
dimplot_clusters = Seurat::DimPlot(sobj, reduction = name2D, label = TRUE) +
  Seurat::NoAxes() +
  ggplot2::theme(aspect.ratio = 1)
dimplot_clusters

Visualization

We can represent the 4 quality metrics :

plot_list = Seurat::FeaturePlot(sobj, reduction = name2D,
                                combine = FALSE, pt.size = 0.5,
                                features = c("percent.mt", "percent.rb", "nFeature_RNA", "log_nCount_RNA"))
plot_list = lapply(plot_list, FUN = function(one_plot) {
  one_plot +
    Seurat::NoAxes() +
    ggplot2::scale_color_gradientn(colors = aquarius:::color_gene) +
    ggplot2::theme(aspect.ratio = 1)
})

patchwork::wrap_plots(plot_list, nrow = 1)

Project name

We can visualize the two batch-effect corrected representations :

plot_list = lapply(c(paste0("harmony_", ndims, "_tsne"),
                     paste0("harmony_", ndims, "_umap")), FUN = function(one_proj) {
                       Seurat::DimPlot(sobj, group.by = "project_name",
                                       reduction = one_proj) +
                         ggplot2::scale_color_manual(values = sample_info$color,
                                                     breaks = sample_info$project_name) +
                         Seurat::NoAxes() + ggplot2::ggtitle(one_proj) +
                         ggplot2::theme(aspect.ratio = 1,
                                        plot.title = element_text(hjust = 0.5),
                                        legend.position = "none")
                     })

patchwork::wrap_plots(plot_list, ncol = 2)

Cell type

We also visualize cell types :

plot_list = lapply(c(paste0("harmony_", ndims, "_tsne"),
                     paste0("harmony_", ndims, "_umap")), FUN = function(one_proj) {
                       Seurat::DimPlot(sobj, group.by = "cell_type",
                                       reduction = one_proj) +
                         ggplot2::scale_color_manual(values = color_markers,
                                                     breaks = names(color_markers)) +
                         Seurat::NoAxes() + ggplot2::ggtitle(one_proj) +
                         ggplot2::theme(aspect.ratio = 1,
                                        plot.title = element_text(hjust = 0.5),
                                        legend.position = "none")
                     })

patchwork::wrap_plots(plot_list, ncol = 2)

Clusters

We can represent clusters, split by sample of origin :

plot_list = aquarius::plot_split_dimred(sobj,
                                        reduction = name2D,
                                        split_by = "sample_identifier",
                                        group_by = "seurat_clusters",
                                        split_color = setNames(sample_info$color,
                                                               nm = sample_info$sample_identifier),
                                        group_color = aquarius::gg_color_hue(length(levels(sobj$seurat_clusters))),
                                        main_pt_size = 0.5, bg_pt_size = 0.5)

plot_list[[length(plot_list) + 1]] = dimplot_clusters

patchwork::wrap_plots(plot_list, ncol = 4) +
  patchwork::plot_layout(guides = "collect") &
  ggplot2::theme(legend.position = "none")

We make a heatmap to see clusters distribution among samples :

cluster_markers = c("KRT14",
                    # ORS-related
                    "KRT16", "MGP", "KRT6C", "CST6",
                    # ORS
                    "GPX2", "C1QTNF12", "PTN", "CLEC2B", "TGFBI",
                    # QC metrics
                    "TOP2A", "MCM5",
                    "percent.mt", "percent.rb", "log_nCount_RNA")

ht_annot = Seurat::FetchData(sobj, slot = "data", vars = cluster_markers) %>%
  as.data.frame()
ht_annot$clusters = sobj$seurat_clusters
ht_annot = ht_annot %>%
  dplyr::group_by(clusters) %>%
  dplyr::summarise_all(funs('mean' = mean)) %>%
  as.data.frame() %>%
  dplyr::select(-clusters) %>%
  `colnames<-`(c(cluster_markers))
head(ht_annot)
##      KRT14      KRT16         MGP      KRT6C       CST6       GPX2  C1QTNF12
## 1 4.578465 0.05186759 0.006428408 0.02188553 0.01860284 0.95432052 1.0850512
## 2 4.552475 0.06166770 0.021489433 0.02744067 0.02991833 0.69009714 1.1282141
## 3 5.819549 4.58418615 0.103850543 2.08144321 1.04762443 0.06627249 0.1016624
## 4 4.674406 0.05299129 0.001792917 0.01131326 0.02745902 0.70652083 0.5224868
## 5 4.921679 1.51266000 1.740612256 0.24737992 0.16248624 0.03361098 0.0260873
## 6 5.081435 0.12338963 0.012072106 0.01056778 0.01593547 0.29377344 0.1545786
##           PTN     CLEC2B      TGFBI       TOP2A       MCM5 percent.mt
## 1 1.138268488 0.36948626 0.15534499 0.017599922 0.13937584  5.8751640
## 2 1.702303274 0.08469894 0.08963404 0.019899155 0.11260718  5.8630030
## 3 0.094274674 0.01016314 0.00000000 0.004747829 0.01053055  0.2319391
## 4 0.230374055 0.74794349 0.53308097 0.009820293 0.08593629  6.2785930
## 5 0.165639318 0.01119017 0.02207523 0.046271054 0.15474865  3.2354850
## 6 0.004418436 1.04998957 0.66031205 0.007779332 0.08861761  8.1465889
##   percent.rb log_nCount_RNA
## 1   30.61462       9.469746
## 2   27.78986       9.309881
## 3   25.03567       7.768252
## 4   30.57158       9.299381
## 5   24.15984       9.792451
## 6   26.12972       9.631938
color_fun = function(one_gene) {
  gene_range = range(ht_annot[, one_gene])
  gene_palette = circlize::colorRamp2(colors = c("#FFFFFF", aquarius::color_gene[-1]),
                                      breaks = seq(from = gene_range[1], to = gene_range[2],
                                                   length.out = length(aquarius::color_gene)))
  return(gene_palette)
}

ha = ComplexHeatmap::HeatmapAnnotation(df = ht_annot,
                                       which = "column",
                                       show_legend = TRUE,
                                       col = setNames(nm = cluster_markers,
                                                      lapply(cluster_markers, FUN = color_fun)),
                                       annotation_name_side = "left")

ht = aquarius::plot_prop_heatmap(df = sobj@meta.data[, c("sample_identifier", "seurat_clusters")],
                                 bottom_annotation = ha,
                                 cluster_rows = TRUE,
                                 prop_margin = 1,
                                 row_names_gp = grid::gpar(names = sample_info$sample_identifier,
                                                           col = sample_info$color,
                                                           fontface = "bold"),
                                 row_title = "Sample",
                                 column_title = "Cluster")

ComplexHeatmap::draw(ht,
                     merge_legends = TRUE)

We also look at genes of interest on the projection :

plot_list = lapply(cluster_markers, FUN = function(one_gene) {
  p = Seurat::FeaturePlot(sobj, features = one_gene,
                          pt.size = 0.2, reduction = name2D) +
    ggplot2::scale_color_gradientn(colors = aquarius::color_gene) +
    Seurat::NoAxes() +
    ggplot2::theme(aspect.ratio = 1)
  
  return(p)
})

patchwork::wrap_plots(plot_list, ncol = 5)

Save

We save the Seurat object :

saveRDS(sobj, file = paste0(out_dir, "/", save_name, "_sobj.rds"))

R Session

show
## R version 3.6.3 (2020-02-29)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 20.04.6 LTS
## 
## Matrix products: default
## BLAS:   /usr/local/lib/R/lib/libRblas.so
## LAPACK: /usr/local/lib/R/lib/libRlapack.so
## 
## locale:
## [1] C
## 
## attached base packages:
## [1] stats     graphics  grDevices utils     datasets  methods   base     
## 
## other attached packages:
## [1] ggplot2_3.3.5   patchwork_1.1.2 dplyr_1.0.7    
## 
## loaded via a namespace (and not attached):
##   [1] softImpute_1.4              graphlayouts_0.7.0         
##   [3] pbapply_1.4-2               lattice_0.20-41            
##   [5] haven_2.3.1                 vctrs_0.3.8                
##   [7] usethis_2.0.1               dynwrap_1.2.1              
##   [9] blob_1.2.1                  survival_3.2-13            
##  [11] prodlim_2019.11.13          dynutils_1.0.5             
##  [13] later_1.3.0                 DBI_1.1.1                  
##  [15] R.utils_2.11.0              SingleCellExperiment_1.8.0 
##  [17] rappdirs_0.3.3              uwot_0.1.8                 
##  [19] dqrng_0.2.1                 jpeg_0.1-8.1               
##  [21] zlibbioc_1.32.0             pspline_1.0-18             
##  [23] pcaMethods_1.78.0           mvtnorm_1.1-1              
##  [25] htmlwidgets_1.5.4           GlobalOptions_0.1.2        
##  [27] future_1.22.1               UpSetR_1.4.0               
##  [29] laeken_0.5.2                leiden_0.3.3               
##  [31] clustree_0.4.3              parallel_3.6.3             
##  [33] scater_1.14.6               irlba_2.3.3                
##  [35] DEoptimR_1.0-9              tidygraph_1.1.2            
##  [37] Rcpp_1.0.9                  readr_2.0.2                
##  [39] KernSmooth_2.23-17          carrier_0.1.0              
##  [41] promises_1.1.0              gdata_2.18.0               
##  [43] DelayedArray_0.12.3         limma_3.42.2               
##  [45] graph_1.64.0                RcppParallel_5.1.4         
##  [47] Hmisc_4.4-0                 fs_1.5.2                   
##  [49] RSpectra_0.16-0             fastmatch_1.1-0            
##  [51] ranger_0.12.1               digest_0.6.25              
##  [53] png_0.1-7                   sctransform_0.2.1          
##  [55] cowplot_1.0.0               DOSE_3.12.0                
##  [57] here_1.0.1                  TInGa_0.0.0.9000           
##  [59] ggraph_2.0.3                pkgconfig_2.0.3            
##  [61] GO.db_3.10.0                DelayedMatrixStats_1.8.0   
##  [63] gower_0.2.1                 ggbeeswarm_0.6.0           
##  [65] iterators_1.0.12            DropletUtils_1.6.1         
##  [67] reticulate_1.26             clusterProfiler_3.14.3     
##  [69] SummarizedExperiment_1.16.1 circlize_0.4.15            
##  [71] beeswarm_0.4.0              GetoptLong_1.0.5           
##  [73] xfun_0.35                   bslib_0.3.1                
##  [75] zoo_1.8-10                  tidyselect_1.1.0           
##  [77] reshape2_1.4.4              purrr_0.3.4                
##  [79] ica_1.0-2                   pcaPP_1.9-73               
##  [81] viridisLite_0.3.0           rtracklayer_1.46.0         
##  [83] rlang_1.0.2                 hexbin_1.28.1              
##  [85] jquerylib_0.1.4             dyneval_0.9.9              
##  [87] glue_1.4.2                  RColorBrewer_1.1-2         
##  [89] matrixStats_0.56.0          stringr_1.4.0              
##  [91] lava_1.6.7                  europepmc_0.3              
##  [93] DESeq2_1.26.0               recipes_0.1.17             
##  [95] labeling_0.3                harmony_0.1.0              
##  [97] httpuv_1.5.2                class_7.3-17               
##  [99] BiocNeighbors_1.4.2         DO.db_2.9                  
## [101] annotate_1.64.0             jsonlite_1.7.2             
## [103] XVector_0.26.0              bit_4.0.4                  
## [105] mime_0.9                    aquarius_0.1.5             
## [107] Rsamtools_2.2.3             gridExtra_2.3              
## [109] gplots_3.0.3                stringi_1.4.6              
## [111] processx_3.5.2              gsl_2.1-6                  
## [113] bitops_1.0-6                cli_3.0.1                  
## [115] batchelor_1.2.4             RSQLite_2.2.0              
## [117] randomForest_4.6-14         tidyr_1.1.4                
## [119] data.table_1.14.2           rstudioapi_0.13            
## [121] org.Mm.eg.db_3.10.0         GenomicAlignments_1.22.1   
## [123] nlme_3.1-147                qvalue_2.18.0              
## [125] scran_1.14.6                locfit_1.5-9.4             
## [127] scDblFinder_1.1.8           listenv_0.8.0              
## [129] ggthemes_4.2.4              gridGraphics_0.5-0         
## [131] R.oo_1.24.0                 dbplyr_1.4.4               
## [133] BiocGenerics_0.32.0         TTR_0.24.2                 
## [135] readxl_1.3.1                lifecycle_1.0.1            
## [137] timeDate_3043.102           ggpattern_0.3.1            
## [139] munsell_0.5.0               cellranger_1.1.0           
## [141] R.methodsS3_1.8.1           proxyC_0.1.5               
## [143] visNetwork_2.0.9            caTools_1.18.0             
## [145] codetools_0.2-16            Biobase_2.46.0             
## [147] GenomeInfoDb_1.22.1         vipor_0.4.5                
## [149] lmtest_0.9-38               msigdbr_7.5.1              
## [151] htmlTable_1.13.3            triebeard_0.3.0            
## [153] lsei_1.2-0                  xtable_1.8-4               
## [155] ROCR_1.0-7                  BiocManager_1.30.10        
## [157] scatterplot3d_0.3-41        abind_1.4-5                
## [159] farver_2.0.3                parallelly_1.28.1          
## [161] RANN_2.6.1                  askpass_1.1                
## [163] GenomicRanges_1.38.0        RcppAnnoy_0.0.16           
## [165] tibble_3.1.5                ggdendro_0.1-20            
## [167] cluster_2.1.0               future.apply_1.5.0         
## [169] Seurat_3.1.5                dendextend_1.15.1          
## [171] Matrix_1.3-2                ellipsis_0.3.2             
## [173] prettyunits_1.1.1           lubridate_1.7.9            
## [175] ggridges_0.5.2              igraph_1.2.5               
## [177] RcppEigen_0.3.3.7.0         fgsea_1.12.0               
## [179] remotes_2.4.2               scBFA_1.0.0                
## [181] destiny_3.0.1               VIM_6.1.1                  
## [183] testthat_3.1.0              htmltools_0.5.2            
## [185] BiocFileCache_1.10.2        yaml_2.2.1                 
## [187] utf8_1.1.4                  plotly_4.9.2.1             
## [189] XML_3.99-0.3                ModelMetrics_1.2.2.2       
## [191] e1071_1.7-3                 foreign_0.8-76             
## [193] withr_2.5.0                 fitdistrplus_1.0-14        
## [195] BiocParallel_1.20.1         xgboost_1.4.1.1            
## [197] bit64_4.0.5                 foreach_1.5.0              
## [199] robustbase_0.93-9           Biostrings_2.54.0          
## [201] GOSemSim_2.13.1             rsvd_1.0.3                 
## [203] memoise_2.0.0               evaluate_0.18              
## [205] forcats_0.5.0               rio_0.5.16                 
## [207] geneplotter_1.64.0          tzdb_0.1.2                 
## [209] caret_6.0-86                ps_1.6.0                   
## [211] DiagrammeR_1.0.6.1          curl_4.3                   
## [213] fdrtool_1.2.15              fansi_0.4.1                
## [215] highr_0.8                   urltools_1.7.3             
## [217] xts_0.12.1                  GSEABase_1.48.0            
## [219] acepack_1.4.1               edgeR_3.28.1               
## [221] checkmate_2.0.0             scds_1.2.0                 
## [223] cachem_1.0.6                npsurv_0.4-0               
## [225] babelgene_22.3              rjson_0.2.20               
## [227] openxlsx_4.1.5              ggrepel_0.9.1              
## [229] clue_0.3-60                 rprojroot_2.0.2            
## [231] stabledist_0.7-1            tools_3.6.3                
## [233] sass_0.4.0                  nichenetr_1.1.1            
## [235] magrittr_2.0.1              RCurl_1.98-1.2             
## [237] proxy_0.4-24                car_3.0-11                 
## [239] ape_5.3                     ggplotify_0.0.5            
## [241] xml2_1.3.2                  httr_1.4.2                 
## [243] assertthat_0.2.1            rmarkdown_2.18             
## [245] boot_1.3-25                 globals_0.14.0             
## [247] R6_2.4.1                    Rhdf5lib_1.8.0             
## [249] nnet_7.3-14                 RcppHNSW_0.2.0             
## [251] progress_1.2.2              genefilter_1.68.0          
## [253] statmod_1.4.34              gtools_3.8.2               
## [255] shape_1.4.6                 HDF5Array_1.14.4           
## [257] BiocSingular_1.2.2          rhdf5_2.30.1               
## [259] splines_3.6.3               AUCell_1.8.0               
## [261] carData_3.0-4               colorspace_1.4-1           
## [263] generics_0.1.0              stats4_3.6.3               
## [265] base64enc_0.1-3             dynfeature_1.0.0           
## [267] smoother_1.1                gridtext_0.1.1             
## [269] pillar_1.6.3                tweenr_1.0.1               
## [271] sp_1.4-1                    ggplot.multistats_1.0.0    
## [273] rvcheck_0.1.8               GenomeInfoDbData_1.2.2     
## [275] plyr_1.8.6                  gtable_0.3.0               
## [277] zip_2.2.0                   knitr_1.41                 
## [279] ComplexHeatmap_2.14.0       latticeExtra_0.6-29        
## [281] biomaRt_2.42.1              IRanges_2.20.2             
## [283] fastmap_1.1.0               ADGofTest_0.3              
## [285] copula_1.0-0                doParallel_1.0.15          
## [287] AnnotationDbi_1.48.0        vcd_1.4-8                  
## [289] babelwhale_1.0.1            openssl_1.4.1              
## [291] scales_1.1.1                backports_1.2.1            
## [293] S4Vectors_0.24.4            ipred_0.9-12               
## [295] enrichplot_1.6.1            hms_1.1.1                  
## [297] ggforce_0.3.1               Rtsne_0.15                 
## [299] shiny_1.7.1                 numDeriv_2016.8-1.1        
## [301] polyclip_1.10-0             grid_3.6.3                 
## [303] lazyeval_0.2.2              Formula_1.2-3              
## [305] tsne_0.1-3                  crayon_1.3.4               
## [307] MASS_7.3-54                 pROC_1.16.2                
## [309] viridis_0.5.1               dynparam_1.0.0             
## [311] rpart_4.1-15                zinbwave_1.8.0             
## [313] compiler_3.6.3              ggtext_0.1.0
---
title: "HS project"
subtitle: "Zoom in IBL and mORS cells"
author: "Audrey"
date: "`r format(Sys.time(), '%Y-%m-%d')`"
output:
  html_document:
    code_folding: show
    code_download: true
    toc: true
    toc_float: true
    number_sections: false
---

<style>
body {
text-align: justify}
</style>

<!-- Automatically computes and prints in the output the running time for any code chunk -->
```{r, echo=FALSE}
# https://github.com/rstudio/rmarkdown/issues/1453
hooks = knitr::knit_hooks$get()
hook_foldable = function(type) {
  force(type)
  function(x, options) {
    res = hooks[[type]](x, options)
    
    if (isFALSE(options[[paste0("fold_", type)]])) return(res)
    
    paste0(
      "<details><summary>", "show", "</summary>\n\n",
      res,
      "\n\n</details>"
    )
  }
}
knitr::knit_hooks$set(
  output = hook_foldable("output"),
  plot = hook_foldable("plot"),
  time_it = local({
    now = NULL
    function(before, options) {
      if (options$time_it) {
        if (before) {
          now <= Sys.time()
        } else {
          res = difftime(Sys.time(), now, units = "secs")
          paste("(Time to run :", round(res, digits = 2), "s)")
        }
      }
    }
  })
)
```

<!-- Set default parameters for all chunks -->
```{r, setup, include = FALSE}
set.seed(1337L)
knitr::opts_chunk$set(echo = TRUE, # display code
                      # display chunk output
                      message = FALSE,
                      warning = FALSE,
                      fold_output = FALSE, # usefull for sessionInfo()
                      fold_plot = FALSE,
                      
                      # figure settings
                      fig.align = 'center',
                      fig.width = 20,
                      fig.height = 15,
                      
                      # something about seed, chunk and Rmarkdown compilation
                      # https://stackoverflow.com/questions/39417003/long-vectors-not-supported-yet-error-in-rmd-but-not-in-r-script
                      # cache = TRUE,
                      cache.lazy = FALSE, 
                      
                      # add runtime after chunk
                      time_it = FALSE)
```


This file is used to generate a dataset containing only IBL and mORS cells.

```{r library}
library(dplyr)
library(patchwork)
library(ggplot2)

.libPaths()
```


# Preparation

In this section, we set the global settings of the analysis. We will store data there :

```{r out_dir}
save_name = "iblmors"
out_dir = "."
```

We load the sample information :

```{r custom_palette_sample, fig.width = 6, fig.height = 6}
sample_info = readRDS(paste0(out_dir, "/../../1_metadata/hs_hd_sample_info.rds"))
project_names_oi = sample_info$project_name

graphics::pie(rep(1, nrow(sample_info)),
              col = sample_info$color,
              labels = sample_info$project_name)
```

Here are custom colors for each cell type :

```{r color_markers, fig.width = 10, fig.height = 1, class.source = "fold-hide"}
color_markers = readRDS(paste0(out_dir, "/../../1_metadata/hs_hd_color_markers.rds"))

data.frame(cell_type = names(color_markers),
           color = unlist(color_markers)) %>%
  ggplot2::ggplot(., aes(x = cell_type, y = 0, fill = cell_type)) +
  ggplot2::geom_point(pch = 21, size = 5) +
  ggplot2::scale_fill_manual(values = unlist(color_markers), breaks = names(color_markers)) +
  ggplot2::theme_classic() +
  ggplot2::theme(legend.position = "none",
                 axis.line = element_blank(),
                 axis.title = element_blank(),
                 axis.ticks = element_blank(),
                 axis.text.y = element_blank(),
                 axis.text.x = element_text(angle = 30, hjust = 1))
```

# Make `r save_name` dataset

## Atlas

We load the combined dataset containing all cell types from all samples :

```{r load_atlas}
sobj = readRDS(paste0(out_dir, "/../../3_combined/hs_hd_sobj.rds"))
sobj
```

We represent cells in the tSNE :

```{r name2D}
name2D = "harmony_38_tsne"
```

We smooth cell type annotation at a cluster level :

```{r smooth_annotation}
cluster_type = table(sobj$cell_type, sobj$seurat_clusters) %>%
  prop.table(., margin = 2) %>%
  apply(., 2, which.max)
cluster_type = setNames(nm = names(cluster_type),
                        levels(sobj$cell_type)[cluster_type])

sobj$cluster_type = cluster_type[sobj$seurat_clusters]
```


We look gene markers expression level, cell annotation and cluster-smoothed annotation on the projection, to locate `r save_name` cells :

```{r see_iblmors_markers, fig.width = 12, fig.height = 3}
iblmors_markers = c("KRT16", "EHF", "ALDH3A1")
iblmors_cell_type = c("IBL", "ORS")
color_markers[!(names(color_markers) %in% iblmors_cell_type)] = "gray92"

# Feature Plot
plot_list = lapply(iblmors_markers, FUN = function(one_gene) {
  p = Seurat::FeaturePlot(sobj, reduction = name2D,
                          features = one_gene) +
    Seurat::NoAxes() +
    ggplot2::scale_color_gradientn(colors = aquarius:::color_gene) +
    ggplot2::theme(aspect.ratio = 1,
                   plot.subtitle = element_text(hjust = 0.5))
  return(p)
})

# Cell type annotation
plot_list[[length(plot_list) + 1]] = Seurat::DimPlot(sobj, group.by = "cell_type",
                                                     cols = color_markers, reduction = name2D,
                                                     order = save_name) +
  ggplot2::labs(title = "Cell annotation",
                subtitle = paste0(sum(sobj$cell_type %in% iblmors_cell_type),
                                  " cells")) +
  Seurat::NoAxes() + Seurat::NoLegend() +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 plot.subtitle = element_text(hjust = 0.5))

# Cluster-smoothed annotation
plot_list[[length(plot_list) + 1]] = Seurat::DimPlot(sobj,
                                                     reduction = name2D,
                                                     group.by = "cluster_type") +
  ggplot2::scale_color_manual(values = c(unname(unlist(color_markers[iblmors_cell_type])),
                                         rep("gray92", length(color_markers) - length(iblmors_cell_type))),
                              breaks = c(iblmors_cell_type, setdiff(names(color_markers), iblmors_cell_type))) +
  ggplot2::labs(title = "Cluster annotation",
                subtitle = paste0(sum(sobj$cluster_type %in% iblmors_cell_type),
                                  " cells")) +
  Seurat::NoAxes() + Seurat::NoLegend() +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 plot.subtitle = element_text(hjust = 0.5))

patchwork::wrap_plots(plot_list, nrow = 1)
```

Due to clustering that badly separate IBL from IFE, there is a mis-selection of cells of interest : false positive. However, annotation smoothing adds a lot of (all) false negative and clean the annotation. We extract cells of interest based on clustering. Then, we generate a new cluster to remove false positive.

## Combined dataset

We extract cells of interest based on the clustering :

```{r subset_is_of_interest}
sobj = subset(sobj, cluster_type %in% iblmors_cell_type)
sobj
```

We remove all things that were calculated based on the full atlas :

```{r remove_reductions}
sobj = Seurat::DietSeurat(sobj)
sobj
```

## Clean metadata

We keep a subset of meta.data and reset levels :

```{r sobj_set_factor_levels}
sobj@meta.data = sobj@meta.data[, c("orig.ident", "nCount_RNA", "nFeature_RNA", "log_nCount_RNA",
                                    "project_name", "sample_identifier", "sample_type", "cell_type",
                                    "Seurat.Phase", "cyclone.Phase", "percent.mt", "percent.rb")]

sobj$orig.ident = factor(sobj$orig.ident, levels = levels(sample_info$project_name))
sobj$project_name = factor(sobj$project_name, levels = levels(sample_info$project_name))
sobj$sample_identifier = factor(sobj$sample_identifier, levels = levels(sample_info$sample_identifier))
sobj$sample_type = factor(sobj$sample_type, levels = levels(sample_info$sample_type))

summary(sobj@meta.data)
```


# Processing

## Metadata

How many cells by sample ?

```{r table_orig_ident}
table(sobj$project_name)
```

We represent this information as a barplot :

```{r barplot_count, fig.width = 8, fig.height = 5}
aquarius::plot_barplot(df = table(sobj$project_name,
                                  sobj$cell_type) %>%
                         as.data.frame.table() %>%
                         `colnames<-`(c("project_name", "cell_type", "nb_cells")),
                       x = "project_name", y = "nb_cells", fill = "cell_type",
                       position = position_stack()) +
  ggplot2::scale_fill_manual(values = color_markers,
                             breaks = names(color_markers),
                             name = "Cell type")
```

## Remove false positive

We normalize gene expression for remaining cells :

```{r normalization}
sobj = Seurat::NormalizeData(sobj,
                             normalization.method = "LogNormalize")
sobj = Seurat::FindVariableFeatures(sobj, nfeatures = 3000)
sobj = Seurat::ScaleData(sobj)

sobj
```

We perform a PCA :

```{r pca}
sobj = Seurat::RunPCA(sobj,
                      assay = "RNA",
                      reduction.name = "RNA_pca",
                      npcs = 100,
                      seed.use = 1337L)
sobj
```

We choose the number of dimensions such that they summarize 60 % of the variability :

```{r ndims}
stdev = sobj@reductions[["RNA_pca"]]@stdev
stdev_prop = cumsum(stdev)/sum(stdev)
ndims = which(stdev_prop > 0.60)[1]
ndims
```

We can visualize this on the elbow plot :

```{r elbowplot, fig.width = 12, fig.height = 4}
elbow_p = Seurat::ElbowPlot(sobj, ndims = 100, reduction = "RNA_pca") +
  ggplot2::geom_point(x = ndims, y = stdev[ndims], col = "red")
x_text = ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>% as.numeric()
elbow_p = elbow_p +
  ggplot2::scale_x_continuous(breaks = sort(c(x_text, ndims)), limits = c(0, 100))
x_color = ifelse(ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>%
                   as.numeric() %>% round(., 2) == round(ndims, 2), "red", "black")
elbow_p = elbow_p +
  ggplot2::theme_classic() +
  ggplot2::theme(axis.text.x = element_text(color = x_color))

elbow_p
```

We generate a tSNE and a UMAP with `r ndims` principal components :

```{r tsne_umap}
sobj = Seurat::RunTSNE(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_tsne"))

sobj = Seurat::RunUMAP(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_umap"))
```

We can visualize the two representations :

```{r see_umap_tsne, fig.width = 8, fig.height = 4, class.source = "fold-hide"}
tsne = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_tsne")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - tSNE") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 legend.position = "none")

umap = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_umap")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - UMAP") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5))

tsne | umap
```


We generate a clustering from the PCA :

```{r clustering, fig.width = 6, fig.height = 5}
reduction_name = "RNA_pca"

sobj = Seurat::FindNeighbors(sobj, reduction = reduction_name)
sobj = Seurat::FindClusters(sobj, resolution = 1.7)

cluster_plot = Seurat::DimPlot(sobj, label = TRUE,
                               reduction = paste0(reduction_name, "_", ndims, "_umap")) +
  Seurat::NoAxes() +
  ggplot2::theme(aspect.ratio = 1)
cluster_plot
```

We look at key markers for `r save_name` cells, and for eventual contamination :

```{r plot_genes, fig.width = 12, fig.height = 6}
plot_list = lapply(c("nFeature_RNA", iblmors_markers,
                     c("SPINK5", "KRT1", "KRTDAP", "CIDEA")), FUN = function(one_gene) {
                       Seurat::FeaturePlot(sobj, features = one_gene,
                                           reduction = paste0(reduction_name, "_", ndims, "_umap")) +
                         ggplot2::scale_color_gradientn(colors = aquarius::color_gene) +
                         ggplot2::theme(aspect.ratio = 1) +
                         Seurat::NoAxes() + Seurat::NoLegend()
                     })

patchwork::wrap_plots(plot_list, nrow = 2)
```

We select clusters based on KRTDAP expression :

```{r select_clusters, fig.width = 10, fig.height = 5}
mean_score_thresh = 1

sobj$KRTDAP_expr = Seurat::FetchData(sobj, "KRTDAP")
score_by_clusters = sobj@meta.data %>%
  dplyr::select(seurat_clusters, KRTDAP_expr) %>%
  dplyr::group_by(seurat_clusters) %>%
  dplyr::summarise(avg_score = mean(KRTDAP_expr)) %>%
  as.data.frame()

ggplot2::ggplot(score_by_clusters, aes(x = seurat_clusters, y = avg_score)) +
  ggplot2::geom_point() +
  ggplot2::geom_hline(yintercept = mean_score_thresh, col = "red") +
  ggplot2::labs(x = "Cluster ID", y = "Mean KRTDAP expression",
                title = "Proportion of cells by cluster") +
  ggplot2::theme_classic() +
  ggplot2::theme(plot.title = element_text(hjust = 0.5, face = "bold"))
```

We remove clusters above threshold :

```{r clusters_removal}
clusters_to_remove = score_by_clusters %>%
  dplyr::filter(avg_score > mean_score_thresh) %>%
  dplyr::pull(seurat_clusters) %>%
  as.character()

sobj = subset(sobj, idents = clusters_to_remove, invert = TRUE)
sobj
```

We remove all reductions in this dataset :

```{r diet_sobj}
sobj = Seurat::DietSeurat(sobj, assays = "RNA")
sobj
```

How many cells by sample ?

```{r table_orig_ident2}
table(sobj$project_name)
```

We represent this information as a barplot :

```{r barplot_count2, fig.width = 8, fig.height = 5}
aquarius::plot_barplot(df = table(sobj$project_name,
                                  sobj$cell_type) %>%
                         as.data.frame.table() %>%
                         `colnames<-`(c("project_name", "cell_type", "nb_cells")),
                       x = "project_name", y = "nb_cells", fill = "cell_type",
                       position = position_fill()) +
  ggplot2::scale_fill_manual(values = color_markers,
                             breaks = names(color_markers),
                             name = "Cell type")
```

No contamination remaining !

## Projection

We remove genes that are expressed in less than 5 cells :

```{r filter_genes}
sobj = aquarius::filter_features(sobj, min_cells = 5)
sobj
```


We normalize the count matrix for remaining cells :

```{r normalization2}
sobj = Seurat::NormalizeData(sobj,
                             normalization.method = "LogNormalize")
sobj = Seurat::FindVariableFeatures(sobj, nfeatures = 2000)
sobj = Seurat::ScaleData(sobj)

sobj
```

We perform a PCA :

```{r pca2}
sobj = Seurat::RunPCA(sobj,
                      assay = "RNA",
                      reduction.name = "RNA_pca",
                      npcs = 100,
                      seed.use = 1337L)
sobj
```

We choose the number of dimensions such that they summarize 35 % of the variability :

```{r ndims2}
stdev = sobj@reductions[["RNA_pca"]]@stdev
stdev_prop = cumsum(stdev)/sum(stdev)
ndims = which(stdev_prop > 0.35)[1]
ndims
```

We can visualize this on the elbow plot :

```{r elbowplot2, fig.width = 12, fig.height = 4}
elbow_p = Seurat::ElbowPlot(sobj, ndims = 100, reduction = "RNA_pca") +
  ggplot2::geom_point(x = ndims, y = stdev[ndims], col = "red")
x_text = ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>% as.numeric()
elbow_p = elbow_p +
  ggplot2::scale_x_continuous(breaks = sort(c(x_text, ndims)), limits = c(0, 100))
x_color = ifelse(ggplot_build(elbow_p)$layout$panel_params[[1]]$x$get_labels() %>%
                   as.numeric() %>% round(., 2) == round(ndims, 2), "red", "black")
elbow_p = elbow_p +
  ggplot2::theme_classic() +
  ggplot2::theme(axis.text.x = element_text(color = x_color))

elbow_p
```

### Without correction

We generate a tSNE and a UMAP with `r ndims` principal components :

```{r tsne_umap2}
sobj = Seurat::RunTSNE(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_tsne"))

sobj = Seurat::RunUMAP(sobj,
                       reduction = "RNA_pca",
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction.name = paste0("RNA_pca_", ndims, "_umap"))
```

We can visualize the two representations :

```{r see_umap_tsne2, fig.width = 8, fig.height = 4, class.source = "fold-hide"}
tsne = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_tsne")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - tSNE") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 legend.position = "none")

umap = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("RNA_pca_", ndims, "_umap")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - UMAP") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5))

tsne | umap
```

There is a batch-effect mainly in the right population : due to the disease ?

### Harmony

We remove batch-effect using Harmony :

```{r harmony, fig.width = 8, fig.height = 5}
`%||%` = function(lhs, rhs) {
  if (!is.null(x = lhs)) {
    return(lhs)
  } else {
    return(rhs)
  }
}

set.seed(1337L)
sobj = harmony::RunHarmony(object = sobj,
                           group.by.vars = "project_name",
                           plot_convergence = TRUE,
                           reduction = "RNA_pca",
                           assay.use = "RNA",
                           reduction.save = "harmony",
                           max.iter.harmony = 20,
                           project.dim = FALSE)
```

From this batch-effect removed projection, we generate a tSNE and a UMAP.

```{r harmony_tsne_umap, fig.width = 12, fig.height = 12}
sobj = Seurat::RunUMAP(sobj, 
                       seed.use = 1337L,
                       dims = 1:ndims,
                       reduction = "harmony",
                       reduction.name = paste0("harmony_", ndims, "_umap"),
                       reduction.key = paste0("harmony_", ndims, "umap_"))
sobj = Seurat::RunTSNE(sobj,
                       dims = 1:ndims,
                       seed.use = 1337L,
                       reduction = "harmony",
                       reduction.name = paste0("harmony_", ndims, "_tsne"),
                       reduction.key = paste0("harmony", ndims, "tsne_"))
```

These are the corrected UMAP and tSNE :

```{r see_umap_tsne_harmony1, fig.width = 8, fig.height = 4, class.source = "fold-hide"}
tsne = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("harmony_", ndims, "_tsne")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - harmony - tSNE") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5),
                 legend.position = "none")

umap = Seurat::DimPlot(sobj, group.by = "project_name",
                       reduction = paste0("harmony_", ndims, "_umap")) +
  ggplot2::scale_color_manual(values = sample_info$color,
                              breaks = sample_info$project_name) +
  Seurat::NoAxes() + ggplot2::ggtitle("PCA - harmony - UMAP") +
  ggplot2::theme(aspect.ratio = 1,
                 plot.title = element_text(hjust = 0.5))

tsne | umap
```


We will keep the tSNE from Harmony :

```{r set_name2D}
reduction = "harmony"
name2D = paste0("harmony_", ndims, "_tsne")
```

## Clustering

We generate a clustering :

```{r clustering2, fig.width = 6, fig.height = 4}
sobj = Seurat::FindNeighbors(sobj, reduction = reduction, dims = 1:ndims)
sobj = Seurat::FindClusters(sobj, resolution = 1)

dimplot_clusters = Seurat::DimPlot(sobj, reduction = name2D, label = TRUE) +
  Seurat::NoAxes() +
  ggplot2::theme(aspect.ratio = 1)
dimplot_clusters
```


# Visualization

We can represent the 4 quality metrics :

```{r qc_plot, fig.width = 12, fig.height = 3}
plot_list = Seurat::FeaturePlot(sobj, reduction = name2D,
                                combine = FALSE, pt.size = 0.5,
                                features = c("percent.mt", "percent.rb", "nFeature_RNA", "log_nCount_RNA"))
plot_list = lapply(plot_list, FUN = function(one_plot) {
  one_plot +
    Seurat::NoAxes() +
    ggplot2::scale_color_gradientn(colors = aquarius:::color_gene) +
    ggplot2::theme(aspect.ratio = 1)
})

patchwork::wrap_plots(plot_list, nrow = 1)
```

## Project name

We can visualize the two batch-effect corrected representations :

```{r see_umap_tsne_all, fig.width = 8, fig.height = 4, class.source = "fold-hide"}
plot_list = lapply(c(paste0("harmony_", ndims, "_tsne"),
                     paste0("harmony_", ndims, "_umap")), FUN = function(one_proj) {
                       Seurat::DimPlot(sobj, group.by = "project_name",
                                       reduction = one_proj) +
                         ggplot2::scale_color_manual(values = sample_info$color,
                                                     breaks = sample_info$project_name) +
                         Seurat::NoAxes() + ggplot2::ggtitle(one_proj) +
                         ggplot2::theme(aspect.ratio = 1,
                                        plot.title = element_text(hjust = 0.5),
                                        legend.position = "none")
                     })

patchwork::wrap_plots(plot_list, ncol = 2)
```

## Cell type

We also visualize cell types :

```{r see_umap_tsne_celltype, fig.width = 8, fig.height = 4, class.source = "fold-hide"}
plot_list = lapply(c(paste0("harmony_", ndims, "_tsne"),
                     paste0("harmony_", ndims, "_umap")), FUN = function(one_proj) {
                       Seurat::DimPlot(sobj, group.by = "cell_type",
                                       reduction = one_proj) +
                         ggplot2::scale_color_manual(values = color_markers,
                                                     breaks = names(color_markers)) +
                         Seurat::NoAxes() + ggplot2::ggtitle(one_proj) +
                         ggplot2::theme(aspect.ratio = 1,
                                        plot.title = element_text(hjust = 0.5),
                                        legend.position = "none")
                     })

patchwork::wrap_plots(plot_list, ncol = 2)
```

## Clusters

We can represent clusters, split by sample of origin :

```{r plot_split_dimred, fig.width = 12, fig.height = 7}
plot_list = aquarius::plot_split_dimred(sobj,
                                        reduction = name2D,
                                        split_by = "sample_identifier",
                                        group_by = "seurat_clusters",
                                        split_color = setNames(sample_info$color,
                                                               nm = sample_info$sample_identifier),
                                        group_color = aquarius::gg_color_hue(length(levels(sobj$seurat_clusters))),
                                        main_pt_size = 0.5, bg_pt_size = 0.5)

plot_list[[length(plot_list) + 1]] = dimplot_clusters

patchwork::wrap_plots(plot_list, ncol = 4) +
  patchwork::plot_layout(guides = "collect") &
  ggplot2::theme(legend.position = "none")
```

We make a heatmap to see clusters distribution among samples :

```{r annotated_heatmap, fig.width = 12, fig.height = 10}
cluster_markers = c("KRT14",
                    # ORS-related
                    "KRT16", "MGP", "KRT6C", "CST6",
                    # ORS
                    "GPX2", "C1QTNF12", "PTN", "CLEC2B", "TGFBI",
                    # QC metrics
                    "TOP2A", "MCM5",
                    "percent.mt", "percent.rb", "log_nCount_RNA")

ht_annot = Seurat::FetchData(sobj, slot = "data", vars = cluster_markers) %>%
  as.data.frame()
ht_annot$clusters = sobj$seurat_clusters
ht_annot = ht_annot %>%
  dplyr::group_by(clusters) %>%
  dplyr::summarise_all(funs('mean' = mean)) %>%
  as.data.frame() %>%
  dplyr::select(-clusters) %>%
  `colnames<-`(c(cluster_markers))
head(ht_annot)

color_fun = function(one_gene) {
  gene_range = range(ht_annot[, one_gene])
  gene_palette = circlize::colorRamp2(colors = c("#FFFFFF", aquarius::color_gene[-1]),
                                      breaks = seq(from = gene_range[1], to = gene_range[2],
                                                   length.out = length(aquarius::color_gene)))
  return(gene_palette)
}

ha = ComplexHeatmap::HeatmapAnnotation(df = ht_annot,
                                       which = "column",
                                       show_legend = TRUE,
                                       col = setNames(nm = cluster_markers,
                                                      lapply(cluster_markers, FUN = color_fun)),
                                       annotation_name_side = "left")

ht = aquarius::plot_prop_heatmap(df = sobj@meta.data[, c("sample_identifier", "seurat_clusters")],
                                 bottom_annotation = ha,
                                 cluster_rows = TRUE,
                                 prop_margin = 1,
                                 row_names_gp = grid::gpar(names = sample_info$sample_identifier,
                                                           col = sample_info$color,
                                                           fontface = "bold"),
                                 row_title = "Sample",
                                 column_title = "Cluster")

ComplexHeatmap::draw(ht,
                     merge_legends = TRUE)
```

We also look at genes of interest on the projection :

```{r plot_genes_oi, fig.width = 12, fig.height = 7}
plot_list = lapply(cluster_markers, FUN = function(one_gene) {
  p = Seurat::FeaturePlot(sobj, features = one_gene,
                          pt.size = 0.2, reduction = name2D) +
    ggplot2::scale_color_gradientn(colors = aquarius::color_gene) +
    Seurat::NoAxes() +
    ggplot2::theme(aspect.ratio = 1)
  
  return(p)
})

patchwork::wrap_plots(plot_list, ncol = 5)
```

# Save

We save the Seurat object :

```{r save_sobj}
saveRDS(sobj, file = paste0(out_dir, "/", save_name, "_sobj.rds"))
```


# R Session

```{r sessioninfo, echo = FALSE, fold_output = TRUE}
sessionInfo()
```

